Properties of cellular neural networks in selected image processing applications
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Summary form only given. Concerns the use of stable analog cellular neural networks (CNN) for image processing. CNN architecture can be treated as a space-invariant iterative nonlinear filter. The authors compare CNNs and other techniques in image processing. The analysis is performed for two kinds of tasks for which nonlinear filters are commonly used: noise suppression and edge detection. Two synthesized test images, 64*64 pixels each, are used in experiments. One consists of solid blocks of different shapes and the other contains thin lines and sharp corners. The images are added with zero-mean Gaussian noise and impulsive noise. The efficiency of noise removal is examined. The limiter type M filter, a type of median filter, is considered. Edge detection by various filters and operators is compared.<<ETX>>
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